You can not select more than 25 topics
Topics must start with a letter or number, can include dashes ('-') and can be up to 35 characters long.
1.6 KiB
1.6 KiB
Advanced Research
An enhanced implementation of the orchestrator-worker pattern from Anthropic's paper, "How we built our multi-agent research system", built on top of the bleeding-edge multi-agent framework swarms. Our implementation of this advanced research system leverages parallel execution, LLM-as-judge evaluation, and professional report generation with export capabilities.
Repository: AdvancedResearch
Installation
pip3 install -U advanced-research
# uv pip install -U advanced-research
Environment Variables
# Exa Search API Key (Required for web search functionality)
EXA_API_KEY="your_exa_api_key_here"
# Anthropic API Key (For Claude models)
ANTHROPIC_API_KEY="your_anthropic_api_key_here"
# OpenAI API Key (For GPT models)
OPENAI_API_KEY="your_openai_api_key_here"
# Worker Agent Configuration
WORKER_MODEL_NAME="gpt-4.1"
WORKER_MAX_TOKENS=8000
# Exa Search Configuration
EXA_SEARCH_NUM_RESULTS=2
EXA_SEARCH_MAX_CHARACTERS=100
Note: At minimum, you need EXA_API_KEY
for web search functionality. For LLM functionality, you need either ANTHROPIC_API_KEY
or OPENAI_API_KEY
.
Quick Start
Basic Usage
from advanced_research import AdvancedResearch
# Initialize the research system
research_system = AdvancedResearch(
name="AI Research Team",
description="Specialized AI research system",
max_loops=1,
)
# Run research and get results
result = research_system.run(
"What are the latest developments in quantum computing?"
)
print(result)